A Regional-Level Resource-Saving Model for Winter Road Surface Snow Detection in Extreme Weathers

Xinhao Zhou, Tong Wang, Zhaodong Liu, Hao Wei, Guangyuan Pan; Proceedings of the Winter Conference on Applications of Computer Vision (WACV), 2025, pp. 6063-6072

Abstract


Achieving timely and accurate snow detection on road surfaces in extreme weather conditions is vital for both transportation and computer vision applications. However conventional object detection models particularly those designed for small targets fall short in addressing the challenge that is posed by special regional-level multi-scale recognition task. To this end an end-to-end precise and swift road surface snow detection architecture termed the Resource-Saving Snow Detect Model (RSSD) that includes a multidimensional directional attention mechanism is proposed. In this model we designed three dedicated modules namely Multi-dimensional Bidirectional Attention Module (MDBA) Split-EMA-Convolution (SEC) and Equal Split Convolution (ESC) to address the essential feature extraction and fusion tasks in snow detection. MDBA is able to promote lateral interaction and comprehensive feature fusion across scales while SEC can not only enhance feature extraction for regional awareness but also reduces computational load making it efficient under minimal computational power consumption. ESC preserves feature height fusion while significantly reducing computational costs thereby enhancing the real-time detection capability of the model. In experimental evaluations conducted with data collected by in-vehicle cameras from various roads in the United States and Canada the results demonstrate higher detection accuracy and speed compared to the latest Transformer-based real-time object detection methods and other exiting methods in the literature. Furthermore we validated the model's performance and data sensitivity through semi-supervised learning with 50000 unlabeled images. This research holds significant implications for winter road traffic and provides valuable insights for similar computer vision tasks.

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[bibtex]
@InProceedings{Zhou_2025_WACV, author = {Zhou, Xinhao and Wang, Tong and Liu, Zhaodong and Wei, Hao and Pan, Guangyuan}, title = {A Regional-Level Resource-Saving Model for Winter Road Surface Snow Detection in Extreme Weathers}, booktitle = {Proceedings of the Winter Conference on Applications of Computer Vision (WACV)}, month = {February}, year = {2025}, pages = {6063-6072} }